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Analysis of Behavioral Characteristics of Smartphone Addiction Using Data Mining

机译:基于数据挖掘的智能手机成瘾行为特征分析

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In 2016, the number of mobile phone subscriptions worldwide had surpassed the total world population; moreover, the number of smartphone addicts is increasing each year. Thus, the objective of this study is to analyze smartphone addiction by considering the differences between smartphone usage patterns as well as cognition. Our proposed method involves automatically collecting and analyzing data through an app instead of using the existing self-reporting method, thereby improving the accuracy of data and ensuring data reliability from respondents. Based on the results of our study, we observed that there is a significant cognitive bias between the self-reports and automatically collected data. As a result of applying data mining, among the six criteria out of the total 24 items of the questionnaire, the higher the “recurrence” item, the higher the addiction; further, “forbidden” item 1 had the largest effect on addiction. In addition, the input variables that have the greatest influence on the high-risk users were the number of times the screen was turned on and real-use time/cognitive-use time. However, the amount of data and time of smartphone usage were not related to addiction. In the future, we will modify the app to obtain more accurate data, based on which, we can analyze the effects of smartphone addiction, such as depression, anxiety, stress, self-esteem, and emotional regulation, among others.
机译:2016年,全球手机订户数量已超过世界总人口。此外,智能手机上瘾者的数量每年都在增加。因此,本研究的目的是通过考虑智能手机使用模式和认知之间的差异来分析智能手机成瘾性。我们提出的方法涉及通过应用程序自动收集和分析数据,而不是使用现有的自报告方法,从而提高数据的准确性并确保受访者的数据可靠性。根据我们的研究结果,我们观察到自我报告与自动收集的数据之间存在明显的认知偏差。由于进行了数据挖掘,在问卷的全部24项中的6项标准中,“复发”项越高,成瘾性就越高;此外,“禁止”项目1对成瘾的影响最大。另外,对高风险用户影响最大的输入变量是打开屏幕的次数和实际使用时间/认知使用时间。但是,智能手机使用的数据量和时间与成瘾无关。将来,我们将修改该应用程序以获得更准确的数据,在此基础上,我们可以分析智能手机成瘾的影响,例如抑郁,焦虑,压力,自尊和情绪调节等。

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